1. Predicting vehicle fuel consumption based on multi-view deep neural network.
- Author
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Li, Yawen, Zeng, Isabella Yunfei, Niu, Ziheng, Shi, Jiahao, Wang, Ziyang, and Guan, Zeli
- Subjects
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ARTIFICIAL neural networks , *AUTOMOTIVE fuel consumption , *ENERGY consumption , *STANDARD deviations - Abstract
The problem of global warming is getting more serious, and vehicle emission is the main cause. In recent years, the number of locomotives in China has been increasing at a rate of more than 20% per year, and the problem of automobile pollution is becoming more serious. The transportation industry is the main source of fossil fuel combustion and environmental pollution. Therefore, in this paper, we propose a multi-view deep neural network (MVDNN) to analyze the key factors affecting the fuel consumption of automobiles. The experiments show that the introduction of human input improves the prediction accuracy and the root mean square error (RMSE) achieves 0.993. In addition, this paper also finds that for drivers, driving habits, driving frequency, and safety awareness are the most important factors affecting the fuel consumption of vehicles by combining Lasso regression with MVDNN. Finally, by comparing the prediction accuracy of different experiments, relevant policy suggestions are made. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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